TensorFlow tutorials written in Python (of course) with Jupyter Notebook. Tried to explain as kindly as possible, as these tutorials are intended for TensorFlow beginners. Hope these tutorials to be a useful recipe book for your deep learning projects. Enjoy coding! :)
- Basics of TensorFlow / MNIST / Numpy / Image Processing / Generating Custom Dataset
 - Machine Learing Basics with TensorFlow: Linear Regression / Logistic Regression with MNIST / Logistic Regression with Custom Dataset
 - Multi-Layer Perceptron (MLP): Simple MNIST / Deeper MNIST / Xavier Init MNIST / Custom Dataset
 - Convolutional Neural Network (CNN): Simple MNIST / Deeper MNIST / Simple Custom Dataset / Basic Custom Dataset
 - Using Pre-trained Model (VGG): Simple Usage / CNN Fine-tuning on Custom Dataset
 - Recurrent Neural Network (RNN): Simple MNIST / Char-RNN Train / Char-RNN Sample / Hangul-RNN Train / Hangul-RNN Sample
 - Word Embedding (Word2Vec): Simple Version / Complex Version
 - Auto-Encoder Model: Simple Auto-Encoder / Denoising Auto-Encoder / Convolutional Auto-Encoder (deconvolution)
 - Class Activation Map (CAM): Global Average Pooling on MNIST
 - TensorBoard Usage: Linear Regression / MLP / CNN
 - Semantic segmentation
 - Super resolution (in progress)
 - Web crawler
 - Gaussian process regression
 - Neural Style
 - Face detection with OpenCV
 
- TensorFlow
 - Numpy
 - SciPy
 - Pillow
 - BeautifulSoup
 - Pretrained VGG: inside 'data/' folder
 
Most of the codes are simple refactorings of Aymeric Damien's Tutorial or Nathan Lintz's Tutorial. There could be missing credits. Please let me know.